Sun Tao, Sun Nanbo, Wang Jing, Tan Shan
Key Laboratory of Image Processing and Intelligent Control of Ministry of Education of China, School of Automation, Huazhong University of Science and Technology, Wuhan 430074, People’s Republic of China.
Phys Med Biol. 2015 Mar 7;60(5):1965-87. doi: 10.1088/0031-9155/60/5/1965.
Statistical iterative reconstruction algorithms have shown potential to improve cone-beam CT (CBCT) image quality. Most iterative reconstruction algorithms utilize prior knowledge as a penalty term in the objective function. The penalty term greatly affects the performance of a reconstruction algorithm. The total variation (TV) penalty has demonstrated great ability in suppressing noise and improving image quality. However, calculated from the first-order derivatives, the TV penalty leads to the well-known staircase effect, which sometimes makes the reconstructed images oversharpen and unnatural. In this study, we proposed to use a second-order derivative penalty that involves the Frobenius norm of the Hessian matrix of an image for CBCT reconstruction. The second-order penalty retains some of the most favorable properties of the TV penalty like convexity, homogeneity, and rotation and translation invariance, and has a better ability in preserving the structures of gradual transition in the reconstructed images. An effective algorithm was developed to minimize the objective function with the majorization-minimization (MM) approach. The experiments on a digital phantom and two physical phantoms demonstrated the priority of the proposed penalty, particularly in suppressing the staircase effect of the TV penalty.
统计迭代重建算法已显示出改善锥束CT(CBCT)图像质量的潜力。大多数迭代重建算法将先验知识用作目标函数中的惩罚项。该惩罚项极大地影响重建算法的性能。总变差(TV)惩罚在抑制噪声和改善图像质量方面已展现出强大能力。然而,TV惩罚由一阶导数计算得出,会导致众所周知的阶梯效应,这有时会使重建图像过度锐化且不自然。在本研究中,我们提议使用二阶导数惩罚,该惩罚涉及图像的海森矩阵的弗罗贝尼乌斯范数用于CBCT重建。二阶惩罚保留了TV惩罚的一些最有利特性,如凸性、齐次性以及旋转和平移不变性,并且在保留重建图像中渐变结构方面具有更好的能力。开发了一种有效的算法,采用主元最小化(MM)方法来最小化目标函数。在数字体模和两个物理体模上进行的实验证明了所提惩罚的优越性,特别是在抑制TV惩罚的阶梯效应方面。